Senior Data Engineering Manager
Quick Summary
Large scale data pipelines built for the investor team supporting applications, feeds, and insight agents. Production datasets and analytical models used in research workflows, internal products,

YipitData is the leading market research and analytics firm for the disruptive economy and most recently raised $475M from The Carlyle Group at a valuation of over $1B. Every day, our proprietary technology analyzes billions of alternative data points to uncover actionable insights across sectors like software, AI, cloud, e-commerce, ridesharing, and payments.
Our data and research teams transform raw data into strategic intelligence, delivering accurate, timely, and deeply contextualized analysis that our customers—ranging from the world’s top investment funds to Fortune 500 companies—depend on to drive high-stakes decisions. From sourcing and licensing novel datasets to rigorous analysis and expert narrative framing, our teams ensure clients get not just data, but clarity and confidence.
We operate globally with offices in the US (NYC, Austin, Miami, Mountain View), APAC (Hong Kong, Shanghai, Beijing, Guangzhou, Singapore), and India. Our award-winning, people-centric culture—recognized by Inc. as a Best Workplace for three consecutive years—emphasizes transparency, ownership, and continuous mastery.
YipitData isn’t a place for coasting—it’s a launchpad for ambitious, impact-driven professionals.
From day one, you’ll take the lead on meaningful work, accelerate your growth, and gain exposure that shapes careers.
- Ownership That Matters: You’ll lead high-impact projects with real business outcomes
- Rapid Growth: We compress years of learning into months
- Merit Over Titles: Trust and responsibility are earned through execution, not tenure
- Velocity with Purpose: We move fast, support each other, and aim high—always with purpose and intention
If your ambition is matched by your work ethic—and you're hungry for a place where growth, impact, and ownership are the norm—YipitData might be the opportunity you’ve been waiting for.
About the Role
~1 min readWe are looking for a highly skilled Senior Data Engineering Manager to lead the data engineering team powering our Public Investor business. This is a hands-on player-coach role for someone who can develop engineers, guide technical architecture, and contribute directly to the systems that support our investment research products and customer-facing data feeds.
You will own critical, customer-facing data systems built on large-scale alternative datasets, including transaction data, email receipt data, B2B spend data, and other third-party datasets. Your team will transform complex data into reliable, production-grade assets used by research analysts, product teams, internal applications, and external investor clients.
This role is ideal for an engineering leader who combines strong technical judgment, operational rigor, people leadership, and modern AI-assisted development practices. You should be comfortable using tools like Claude Code, Codex, Cursor, or similar systems to accelerate implementation, code review, testing, documentation, debugging, and technical exploration while maintaining a high bar for correctness, reliability, and production ownership.
You will lead the data engineering team responsible for building and scaling data systems across YipitData’s Public Investor business, including:
- Large scale data pipelines built for the investor team supporting applications, feeds, and insight agents.
- Production datasets and analytical models used in research workflows, internal products, and customer-facing deliverables.
- Customer-facing data feeds and recurring external data deliveries with strong expectations around accuracy, timeliness, and reliability.
- AI-ready analytical datasets designed with the structure, metadata, documentation, and business context needed for effective use by AI agents and insight-driven applications.
- Data quality and observability frameworks, including validation checks, freshness monitoring, coverage monitoring, outlier detection, and automated QA controls.
- Technical execution across Databricks, Airflow, SQL, PySpark, and related data infrastructure.
- Operational excellence practices across documentation, incident response, monitoring, reliability, and production support.
Responsibilities
~1 min read- Lead, coach, and develop a global team of data engineers while staying close to architecture, design, code reviews, debugging, and delivery.
- Partner with Product Managers, Application Team, and Research Analysts to translate roadmap priorities, customer needs, and research requirements into scalable technical plans.
- Build and improve scalable data pipelines, data models, QA systems, and customer-facing delivery mechanisms for Public Investor data products.
- Collaborate with Central Team, Feed Operations, Product Specialists, Client Success, and GTM teams to support reliable delivery, incident resolution, client communication workflows, and operational improvements.
- Use AI coding tools to accelerate engineering execution, improve documentation, strengthen QA, support technical exploration, and raise team productivity.
- Create clarity and momentum in ambiguous environments by breaking down complex data, research, and product challenges into actionable engineering plans.
- 8+ years of professional experience in data engineering, data architecture, big data development, ETL engineering, or related technical roles.
- 2+ years of managerial experience, including mentoring, team leadership, and supporting delivery.
- Experience managing, mentoring, or formally leading data engineers or technical teams in a hands-on player-coach capacity.
- Strong hands-on expertise with SQL, PySpark, Databricks, and Airflow or similar workflow orchestration tools.
- Experience building, maintaining, or scaling business-critical data systems, including pipelines, production datasets, data delivery systems, or customer-facing data products.
- Deep technical judgment across data modeling, distributed data systems, pipeline architecture, orchestration, data quality, observability, and production reliability.
- Strong communication and cross-functional collaboration skills, especially with Product, Research, Operations, Client Success, Sales, and Engineering stakeholders.
Nice to Have
~1 min read- Experience with alternative data or financial data, including consumer transaction data, email receipt data, B2B spend data, or other large-scale third-party datasets.
- Experience supporting customer-facing data feeds, including APIs, flat files, cloud storage, portal-based delivery, or recurring feed delivery systems.
- Experience building data pipelines that support AI agents, LLMs, automated insight generation, or AI-powered analytical workflows.
What We Offer
~1 min readWe are committed to equal employment opportunity regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, marital status, disability, gender, gender identity or expression, or veteran status. We are proud to be an equal opportunity employer.
<img height="1" width="1" style="display:none;" alt="" src="https://px.ads.linkedin.com/collect/?pid=4341228&conversionId=10486642&fmt=gif" />
Location & Eligibility
Listing Details
- Posted
- June 10, 2026
- First seen
- June 10, 2026
- Last seen
- June 10, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 75%
- Scored at
- June 10, 2026
Signal breakdown

New datasets are being created every day and investors need to incorporate them to remain competitive.
View company profilePlease let Yipitdata know you found this job on Jobera.
3 other jobs at Yipitdata
View all →Explore open roles at Yipitdata.
Similar Data Engineering Manager jobs
View all →Browse Similar Jobs
Stay ahead of the market
Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.
No spam. Unsubscribe at any time.